Explainable artificial intelligence toward usable and trustworthy computer-aided early diagnosis of multiple sclerosis from Optical Coherence Tomography
Monica Hernandez, Ubaldo Ramon-Julvez, Elisa Vilades, Beatriz Cordon,, Elvira Mayordomo, Elena Garcia-Martin

TL;DR
This study develops and compares explainable machine learning models using OCT data to improve early diagnosis of multiple sclerosis, emphasizing interpretability for clinical trust.
Contribution
Introduces an explainable machine learning approach for MS diagnosis using OCT, highlighting interpretability and clinical relevance over black-box models.
Findings
GCL layer features are most discriminative for MS detection.
Explainability highlights the importance of the temporal GCL region.
Models achieve high accuracy with interpretable insights.
Abstract
Background: Several studies indicate that the anterior visual pathway provides information about the dynamics of axonal degeneration in Multiple Sclerosis (MS). Current research in the field is focused on the quest for the most discriminative features among patients and controls and the development of machine learning models that yield computer-aided solutions widely usable in clinical practice. However, most studies are conducted with small samples and the models are used as black boxes. Clinicians should not trust machine learning decisions unless they come with comprehensive and easily understandable explanations. Materials and methods: A total of 216 eyes from 111 healthy controls and 100 eyes from 59 patients with relapsing-remitting MS were enrolled. The feature set was obtained from the thickness of the ganglion cell layer (GCL) and the retinal nerve fiber layer (RNFL).…
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Taxonomy
TopicsCell Image Analysis Techniques · AI in cancer detection · Multiple Sclerosis Research Studies
MethodsShapley Additive Explanations
